The Future Of Machine Learning In Python

Master Concepts: Deep Learning, Neural Networks, Unsupervised Learning, Supervised Learning, Data Preprocessing and EDA

Description


Dive into the future of machine learning with Python, using the Feynman Technique to break down complex concepts into simple & understandable terms. This course combines engaging metaphors, interactive quizzes, and hands-on assignments to ensure you not only learn but also deeply understand and apply machine learning principles

Understanding on a fundamental level the concepts of Machine Learning, Deep Learning, Neural Networks, Unsupervised Learning, Supervised Learning, Data Preprocessing & EDA.

Learning Objectives:

  1. Master Python for Machine Learning: Students will gain proficiency in using Python and essential libraries (such as NumPy, Pandas, and Matplotlib) for data manipulation, visualization, and implementation of machine learning algorithms.

  2. Understand and Apply Machine Learning Algorithms: Learners will be able to explain and implement key supervised and unsupervised learning algorithms, including regression, classification, clustering, and dimensionality reduction techniques.

  3. Build and Train Neural Networks: Students will learn how to construct, train, and evaluate neural networks using frameworks like TensorFlow and Keras, and understand the principles behind deep learning and neural network architectures.

  4. Explore Advanced Topics and Ethical Considerations: Participants will explore advanced machine learning topics such as reinforcement learning and generative models, while also gaining insight into the ethical implications and future trends of artificial intelligence and machine learning technologies.


Total Students100
Original Price($)1499
Sale PriceFree
Number of lectures24
Number of quizzes7
Total Reviews0
Global Rating0
Instructor NameLubula Paul Chikwekwe

Reminder – Rate this Premium 100% off Udemy Course on Udemy that you got for FREEE!!

Do not forget to Rate the Course on Udemy!!


Related Posts